<div class="file_content markdown-body">
<h2>
<a id="1政府商务信息采集与抽取技术的研究与实现" class="anchor" href="#1%E6%94%BF%E5%BA%9C%E5%95%86%E5%8A%A1%E4%BF%A1%E6%81%AF%E9%87%87%E9%9B%86%E4%B8%8E%E6%8A%BD%E5%8F%96%E6%8A%80%E6%9C%AF%E7%9A%84%E7%A0%94%E7%A9%B6%E4%B8%8E%E5%AE%9E%E7%8E%B0"></a>1.政府商务信息采集与抽取技术的研究与实现</h2>
<h2>
<a id="2基于自然语言处理的实体抽取方法" class="anchor" href="#2%E5%9F%BA%E4%BA%8E%E8%87%AA%E7%84%B6%E8%AF%AD%E8%A8%80%E5%A4%84%E7%90%86%E7%9A%84%E5%AE%9E%E4%BD%93%E6%8A%BD%E5%8F%96%E6%96%B9%E6%B3%95"></a>2.基于自然语言处理的实体抽取方法</h2>
<h2>
<a id="3面向政府开放数据的知识图谱构建方法" class="anchor" href="#3%E9%9D%A2%E5%90%91%E6%94%BF%E5%BA%9C%E5%BC%80%E6%94%BE%E6%95%B0%E6%8D%AE%E7%9A%84%E7%9F%A5%E8%AF%86%E5%9B%BE%E8%B0%B1%E6%9E%84%E5%BB%BA%E6%96%B9%E6%B3%95"></a>3.面向政府开放数据的知识图谱构建方法</h2>
<h2>
<a id="4基于知识图谱的公共领域对话系统构建" class="anchor" href="#4%E5%9F%BA%E4%BA%8E%E7%9F%A5%E8%AF%86%E5%9B%BE%E8%B0%B1%E7%9A%84%E5%85%AC%E5%85%B1%E9%A2%86%E5%9F%9F%E5%AF%B9%E8%AF%9D%E7%B3%BB%E7%BB%9F%E6%9E%84%E5%BB%BA"></a>4.基于知识图谱的公共领域对话系统构建</h2>
<h2>
<a id="" class="anchor" href="#"></a>.</h2>
<h2>
<a id="-1" class="anchor" href="#-1"></a>.</h2>
<h2>
<a id="-2" class="anchor" href="#-2"></a>.</h2>
<h2>
<a id="-3" class="anchor" href="#-3"></a>.</h2>
<h2>
<a id="-4" class="anchor" href="#-4"></a>.</h2>
<h2>
<a id="-5" class="anchor" href="#-5"></a>.</h2>
<h2>
<a id="-6" class="anchor" href="#-6"></a>.</h2>
<h2>
<a id="-7" class="anchor" href="#-7"></a>.</h2>
<h2>
<a id="-8" class="anchor" href="#-8"></a>.</h2>
<h2>
<a id="-9" class="anchor" href="#-9"></a>.</h2>
<h2>
<a id="-10" class="anchor" href="#-10"></a>.</h2>
<h2>
<a id="-11" class="anchor" href="#-11"></a>..</h2>
<h2>
<a id="-12" class="anchor" href="#-12"></a>.</h2>
<p>1.政府商务信息采集与抽取技术的研究与实现</p>
<p><a href="https://kns.cnki.net/KCMS/detail/detail.aspx?dbcode=CMFD&amp;dbname=CMFD201902&amp;filename=1019119766.nh&amp;uid=WEEvREcwSlJHSldRa1FhdXNXaEhobmc5Q2JmSEROYUZUZm0wRzFhTHgzVT0=%249A4hF_YAuvQ5obgVAqNKPCYcEjKensW4IQMovwHtwkF4VYPoHbKxJw!!&amp;v=MDg1NTBoMVQzcVRyV00xRnJDVVJMT2VaK2R2RnlublZiL0lWRjI2RjdLNUY5YktxWkViUElSOGVYMUx1eFlTN0Q=">论文：政府采购信息多源聚合与关联分析的研究与实现</a></p>
<p><a href="https://kns.cnki.net/KCMS/detail/detail.aspx?dbcode=CMFD&amp;dbname=CMFD201701&amp;filename=1015909462.nh&amp;uid=WEEvREcwSlJHSldRa1FhdXNXaEhobmc5Q2JmSEROYUZUZm0wRzFhTHgzVT0=%249A4hF_YAuvQ5obgVAqNKPCYcEjKensW4IQMovwHtwkF4VYPoHbKxJw!!&amp;v=MzA5NDJDVVJMT2VaK2R2RnlublZiM0lWRjI2RzdxNEY5WEtyWkViUElSOGVYMUx1eFlTN0RoMVQzcVRyV00xRnI=">论文：政府门户网站审查系统设计与实现</a></p>
<p><a href="https://kns.cnki.net/KCMS/detail/detail.aspx?dbcode=CMFD&amp;dbname=CMFDTEMP&amp;filename=1019159791.nh&amp;uid=WEEvREcwSlJHSldRa1FhdXNXaEhobmc5Q2JmSEROYUZUZm0wRzFhTHgzVT0=%249A4hF_YAuvQ5obgVAqNKPCYcEjKensW4IQMovwHtwkF4VYPoHbKxJw!!&amp;v=MDkzMTViUElSOGVYMUx1eFlTN0RoMVQzcVRyV00xRnJDVVJMT2VaK2R2RnlublZiL01WRjI2RjdLOUY5YkZycEU=">论文：面向汽车领域采购线索发现的主题爬虫设计与实现</a></p>
<p><a href="https://kns.cnki.net/KCMS/detail/detail.aspx?dbcode=CMFD&amp;dbname=CMFD201801&amp;filename=1017863239.nh&amp;uid=WEEvREcwSlJHSldRa1FhdXNXaEhobmc5Q2JmSEROYUZUZm0wRzFhTHgzVT0=%249A4hF_YAuvQ5obgVAqNKPCYcEjKensW4IQMovwHtwkF4VYPoHbKxJw!!&amp;v=Mjc2MzdXTTFGckNVUkxPZVorZHZGeW5rVzc3TlZGMjZHYnUrSGRQUHBwRWJQSVI4ZVgxTHV4WVM3RGgxVDNxVHI=">论文：面向多语种的新闻翻译及信息抽取系统的设计与实现</a></p>
<p><a href="https://github.com/liuhuanyong/LawCrimeMining">基于领域语料库构建与NLP方法的裁判文书与犯罪案例文本挖掘项目</a></p>
<p>2.基于自然语言处理的实体抽取方法</p>
<p><a href="https://github.com/liuhuanyong/EventTriplesExtraction">基于依存句法与语义角色标注的事件三元组抽取</a></p>
<p><a href="http://www.actkg.com/extraction/">知行中文图谱抽取三元组</a></p>
<p><a href="https://kns.cnki.net/KCMS/detail/11.2127.TP.20190917.1343.002.html?uid=WEEvREcwSlJHSldRa1FhdXNXaEhobmc5Q2JmSEROYUZUZm0wRzFhTHgzVT0=%249A4hF_YAuvQ5obgVAqNKPCYcEjKensW4IQMovwHtwkF4VYPoHbKxJw!!&amp;v=MDA3NjVGYz1MejdNYWJHNEg5ak1wbzVEWk9zSFl3OU16bVJuNmo1N1QzZmxxV00wQ0xMN1I3cWVidWR2RnlubFVyN1BK">论文：基于文本化简的实体属性抽取方法</a></p>
<p>3.面向政府开放数据的知识图谱构建方法</p>
<p><a href="https://github.com/liuhuanyong/ProductKnowledgeGraph">京东网站的商品知识图谱</a></p>
<p><a href="http://www.actkg.com/demos/">知行中文图谱demo</a></p>
<p>4.基于知识图谱的公共领域对话系统构建</p>
<p><a href="https://github.com/liuhuanyong/ZhidaoChatbot">基于线上公开问答数据的知道类问答机器人</a></p></div>